2023
DOI: 10.20944/preprints202310.0302.v1
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ResNetMF: Enhancing Recommendation Systems with Residual Network Matrix Factorization

Mustafa Payandenick,
Yin Chai Wang

Abstract: In this paper, we introduce ResNetMF, a groundbreaking approach that harnesses the power of residual network matrix factorization to revolutionize recommendation systems. ResNetMF integrates residual networks, renowned for their ability to capture intricate patterns and features, with matrix factorization techniques that excel in modelling user-item interactions. This fusion presents a novel solution that surpasses the limitations of traditional recommendation systems. Through comprehensive experimentation and… Show more

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